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Principal component and second generation wavelet analysis of Treasury yield curve evolution.

机译:国债收益率曲线演变的主成分和第二代小波分析。

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摘要

Prices of U.S. Treasury securities vary over time and across maturities. When the market in Treasurys is sufficiently complete and frictionless, these prices may be modeled by a function time and maturity. A cross-section of this function for time held fixed is called the yield curve; the aggregate of these sections is the evolution of the yield curve. This dissertation studies aspects of this evolution.; There are two complementary approaches to the study of yield curve evolution here. The first is principal components analysis; the second is wavelet analysis. In both approaches both the time and maturity variables are discretized. In principal components analysis the vectors of yield curve shifts are viewed as observations of a multivariate normal distribution. The resulting covariance matrix is diagonalized; the resulting eigenvalues and eigenvectors (the principal components) are used to draw inferences about the yield curve evolution.; In wavelet analysis, the vectors of shifts are resolved into hierarchies of localized fundamental shifts (wavelets) that leave specified global properties invariant (average change and duration change). The hierarchies relate to the degree of localization with movements restricted to a single maturity at the base and general movements at the apex. Second generation wavelet techniques allow better adaptation of the model to economic observables. Statistically, the wavelet approach is inherently nonparametric while the wavelets themselves are better adapted to describing a complete market.; Principal components analysis provides information on the dimension of the yield curve process. While there is no clear demarkation between operative factors and noise, the top six principal components pick up 99% of total interest rate variation 95% of the time. An economically justified basis of this process is hard to find; for example a simple linear model will not suffice for the first principal component and the shape of this component is nonstationary.; Wavelet analysis works more directly with yield curve observations than principal components analysis. In fact the complete process from bond data to multiresolution is presented, including the dedicated Perl programs and the details of the portfolio metrics and specially adapted wavelet construction. The result is more robust statistics which provide balance to the more fragile principal components analysis.
机译:美国国库券的价格随时间和到期日而变化。当国债市场足够完整且没有摩擦时,这些价格可以通过功能时间和到期日来建模。固定时间的函数的横截面称为收益率曲线;这些部分的总和就是收益曲线的演变。本文研究了这种演变的各个方面。这里有两种互补的方法来研究产量曲线的演变。首先是主成分分析;第二是小波分析。在这两种方法中,时间变量和成熟度变量都是离散的。在主成分分析中,屈服曲线移动的向量被视为对多元正态分布的观察。得到的协方差矩阵是对角线的;所得的特征值和特征向量(主成分)用于得出关于收益率曲线演变的推论。在小波分析中,将偏移向量解析为局部基本偏移(小波)的层次结构,这些偏移使指定的全局属性不变(平均变化和持续时间变化)。层次结构与局部化程度有关,运动仅限于基部的单个成熟度,而顶点则限于一般运动。第二代小波技术可以使模型更好地适应经济可观测指标。从统计上讲,小波方法本质上是非参数的,而小波本身更适合于描述一个完整的市场。主成分分析提供了有关收益曲线过程维度的信息。尽管操作因素和噪音之间没有明确的区分,但排名前六位的主要成分在95%的时间内获得了总利率变动的99%。很难找到该过程的经济合理依据。例如,简单的线性模型不足以满足第一个主成分,并且该成分的形状不稳定。与主成分分析相比,小波分析在产量曲线观察中更直接地起作用。实际上,这里介绍了从债券数据到多分辨率的完整过程,包括专用的Perl程序,投资组合指标的详细信息以及经过特殊调整的小波构造。结果是更强大的统计信息,可以为更脆弱的主成分分析提供平衡。

著录项

  • 作者

    Copper, Mark L.;

  • 作者单位

    Florida International University.;

  • 授予单位 Florida International University.;
  • 学科 Economics Finance.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 104 p.
  • 总页数 104
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 财政、金融;
  • 关键词

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